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run_mnli_finetuning.py
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178 lines (149 loc) · 6.47 KB
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#!/usr/bin/env python3
# Copyright (c) 2023 Graphcore Ltd. All rights reserved.
from copy import deepcopy
import logging
import time
import wandb
import torch
import numpy as np
from tqdm import tqdm
import evaluate
import popxl
from popxl.utils import to_numpy
from popxl_addons.array_munging import tensor_parallel_input, tensor_parallel_output
from data.mnli.mnli_data import prepare_dataset, concat_fnc
from popxl_addons import timer
from mnli_inference import mnli_inference
from mnli_finetuning import mnli_finetuning
from config import CONFIG_DIR, GPTConfig
from utils.setup import gpt_training_setup
from modelling.hf_mapping import hf_mapping_lm_to_class_inference_TP
from utils.utils import linear_schedule
from run_mnli_validation import validation
def training(config: GPTConfig, dataset, pretrained):
# Build and compile program
logging.info("Compiling Training Graph.")
session = mnli_finetuning(config)
tp = config.execution.tensor_parallel
rf = session.ir.instance_replication_factor
# Load checkpoint or pretrained
if config.checkpoint.load is not None:
with timer("Loading pretrained checkpoint from file to IPU"):
session.load_checkpoint(config.checkpoint.load)
elif pretrained:
with timer("Loading HF pretrained model to IPU"):
session.write_variables_data(hf_mapping_lm_to_class_inference_TP(config, session, pretrained))
else:
logging.info(f"Not loading a pretrained model.")
samples_per_step = config.execution.device_iterations * config.training.global_batch_size
train_dl = torch.utils.data.DataLoader(
dataset,
batch_size=samples_per_step,
shuffle=True,
drop_last=True,
collate_fn=concat_fnc, # By default DataLoader stacks batches vertically instead of horizontally
)
step = 0
total_steps = config.training.epochs * len(train_dl)
logging.info(f"Total steps: {total_steps}")
if config.training.optimizer.learning_rate.constant:
lr_schedule = {i: config.training.optimizer.learning_rate.maximum for i in range(total_steps + 1)}
else:
lr_schedule = linear_schedule(
total_steps,
1e-7,
config.training.optimizer.learning_rate.maximum,
config.training.optimizer.learning_rate.warmup_proportion,
)
metric = evaluate.load("glue", "mnli")
# Training loop
with session:
start = time.perf_counter()
for epoch in range(config.training.epochs):
for data in train_dl:
words = data["input_ids"]
unpadded_length = data["unpadded_length"]
labels = data["label"]
words = to_numpy(words, session.inputs.words.dtype, copy=False).reshape(-1, *session.inputs.words.shape)
unpadded_length = to_numpy(unpadded_length, session.inputs.unpadded_length.dtype, copy=False).reshape(
-1, *session.inputs.unpadded_length.shape
)
labels = to_numpy(labels, session.inputs.labels.dtype, copy=False).reshape(
-1, *session.inputs.labels.shape
)
lr = np.full((session.ir.num_host_transfers, rf), lr_schedule[step]).astype("float32").squeeze()
data_map = {}
data_map[session.inputs.words] = tensor_parallel_input(words, tp, rf)
data_map[session.inputs.unpadded_length] = tensor_parallel_input(unpadded_length, tp, rf)
data_map[session.inputs.labels] = tensor_parallel_input(labels, tp, rf)
data_map[session.inputs.lr] = lr
# Run program
outputs = session.run(data_map) # type: ignore
losses = tensor_parallel_output(
outputs[session.outputs["loss"]],
session.ir.num_host_transfers,
tp,
rf,
session.outputs["loss"].shape,
tp_identical=True,
)
logits = tensor_parallel_output(
outputs[session.outputs["logits"]],
session.ir.num_host_transfers,
tp,
rf,
session.outputs["logits"].shape,
tp_identical=True,
)
predictions = np.argmax(logits, axis=-1).flatten()
accuracy = metric.compute(predictions=predictions, references=labels.flatten())["accuracy"]
# Logging
duration = time.perf_counter() - start
start = time.perf_counter()
loss = np.mean(losses.astype(np.float32))
throughput = samples_per_step / duration
total_steps = config.execution.device_iterations * step
result_str = (
f"Epoch: {epoch} "
f"Step: {total_steps} "
f"Loss: {loss:5.3f} "
f"Duration: {duration:6.4f} s "
f"Throughput: {throughput:6.1f} samples/sec "
f"Accuracy: {accuracy:1.2f}"
)
logging.info(result_str)
wandb.log(
{"Loss": loss, "LR": lr_schedule[step], "Throughput": throughput, "train_accuracy": accuracy},
step=total_steps,
)
step += 1
return session
def main():
# Configuration
config, args, pretrained = gpt_training_setup(CONFIG_DIR / "mnli_finetuning.yml", "release", "gpt2_small")
config.training.optimizer.learning_rate.constant = True
# Setup dataset
train_dataset = prepare_dataset(config, "train")
validation_dataset = prepare_dataset(config, "validation_matched")
# Train
train_session = training(config, train_dataset, pretrained)
# Validation session
logging.info("Compiling Validation Graph.")
config.model.eval = True
config.execution.micro_batch_size = 16
config.execution.data_parallel = 1
logging.info("Validation config")
logging.info(config)
val_session = mnli_inference(config)
val_session.load_from_session(train_session)
# Validation
validation(config, validation_dataset, val_session)
# Save checkpoint
if config.checkpoint.save is not None:
val_session.save_checkpoint(config.checkpoint.save)
if __name__ == "__main__":
try:
main()
except Exception as e:
logging.exception(e, exc_info=False) # Log time of exception
raise